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I have the following code.

completemodel <- function(model, colnum)
{
  modlst = c()
  tuplenum = length(model)
  if(tuplenum != 0)
    for(i in 1:tuplenum)
      modlst = c(modlst, model[[i]])
  index = seq(0, colnum-1)
  inddiff = setdiff(index, modlst)
  inddifflen = length(inddiff)
  for(i in seq(length.out=inddifflen))
    model = append(model, inddiff[i])
  return(model)
}

##   Calculate number of parameters in model.
numparam <- function(mod, colnum)
  {
    library(RJSONIO)
    mod = fromJSON(mod)
    mod = completemodel(mod, colnum)
    totnum = 0
    for(tup in mod)
      totnum = totnum +(4**length(tup))
    return(totnum)
  }

x = cbind.data.frame(rownum=c(100, 100), colnum=c(10, 20), modeltrue=c("[]", "[]"), modelresult=c("[[1,2]]","[[1,3]]"), stringsAsFactors=FALSE)

> x
  rows colnum modeltrue modelresult
1  100     10        []     [[1,2]]
2  100     20        []     [[1,3]]

How can I operate on x to give me a data frame that looks like the following? Here of course I mean that the value of e.g. numparam("[]", 10) when I write numparam("[]", 10).

  rownum   colnum    numparam_modeltrue   numparam_modelresult
  100        10      numparam("[]", 10)   numparam("[[1,2]]", 10)
  100        20      numparam("[]", 20)   numparam("[[1,3]]", 20)

Some version of the apply function might work, but I am having problems finding the proper formulation.

UPDATE: It seems that if the rownnum, colnum tuple is not unique, then one can do the following.

x = cbind.data.frame(id=c(1, 2, 3), rownum=c(100, 100, 100), colnum=c(10, 20, 20), modeltrue=c("[]", "[]", "[]"),
  modelresult=c("[[1,2]]","[[1,3]]","[[1,3, 4]]"), stringsAsFactors = FALSE)

##Then, create a data.table and set the key

library(data.table)
xDT <- as.data.table(x)
setkeyv(xDT, c("id", "rownum", "colnum")

Is that the correct method?

share|improve this question
    
@RomanLuštrik: I'd be happy to, but what kind of context do you need? The code given above is complete, I think. I just want to operate on the given data frame with the numparam function to obtain another data frame in the manner speciried. What is unclear? This is the actual code I am using. I suppose I could come up with a simpler example to illustrate, though this one is not very complex. –  Faheem Mitha Oct 9 '12 at 8:01
    
numparam_modeltrue and numparam_modelresult are factors? –  Roman Luštrik Oct 9 '12 at 10:18
    
@RomanLuštrik: No, just strings. I'm modified the call to cbind. –  Faheem Mitha Oct 9 '12 at 10:27
    
This might help: stackoverflow.com/questions/9236306/… –  flodel Oct 10 '12 at 0:26
    
@flodel: That does help, thanks. –  Faheem Mitha Oct 10 '12 at 5:00

3 Answers 3

up vote 1 down vote accepted

Alternative approach using sapply:

numparamvec <- function(rownum, colnum, modeltrue, modelresult)
  {
    totnum1 = numparam(modeltrue, as.integer(colnum))
    totnum2 = numparam(modelresult, as.integer(colnum))
    return(c(rownum = rownum, colnum = colnum,
      numparam_modeltrue = totnum1, numparam_modelresult = totnum2))
  }

val <- sapply(seq_len(nrow(x)),
  function(y) do.call(numparamvec, x[y, ]))

> as.data.frame(t(val))
  rownum colnum numparam_modeltrue numparam_modelresult
1    100     10                 40                   48
2    100     20                 80                   88

Alternative approach using vapply:

val <- t(vapply(seq_len(nrow(x)), function(y) do.call(numparamvec, x[y, ]),
  c(rownum = 0, colnum = 0, numparam_modeltrue = 0, numparam_modelresult = 0)))

> val
     rownum colnum numparam_modeltrue numparam_modelresult
[1,]    100     10                 40                   48
[2,]    100     20                 80                   88
share|improve this answer
    
Thanks for the update. I suggest merging your edit to my answer with this answer (and removing it from there), since they are so similar. I think I slightly prefer the vapply version, because, if I understand correctly, it does some validation on the input. –  Faheem Mitha Oct 12 '12 at 9:40
    
@FaheemMitha, Good Suggestion. Changes made. –  BenBarnes Oct 12 '12 at 20:20

If you're open to it, you could use the data.table package.

First, create a data.table, add a unique identifier column id and set that as the key

library(data.table)
xDT <- as.data.table(x)
xDT[, id := seq_len(nrow(xDT))]
setkey(xDT, "id")

Then, using do.call, you can run your numparam function on the appropriate columns:

res1 <- xDT[, list(numparam_modeltrue = do.call(numparam, unname(.SD))),
  .SDcols = c(3, 2), by = key(xDT)]
res2 <- xDT[, list(numparam_modelresult = do.call(numparam, unname(.SD))),
  .SDcols = c(4, 2), by = key(xDT)]

Then combine the results into a data.table

xDT[res1][res2][, c("modeltrue", "modelresult") := NULL, with = FALSE]
   id rownum colnum numparam_modeltrue numparam_modelresult
1:  1    100     10                 40                   48
2:  2    100     20                 80                   88

EDIT:

As Matthew Dowle suggests, you could reach the same results without the mrege at the end by the following:

xDT[,numparam_modeltrue := do.call(numparam, unname(.SD)),
  .SDcols = c(3, 2), by = key(xDT)]
xDT[,numparam_modelresult := do.call(numparam, unname(.SD)),
  .SDcols = c(4, 2), by = key(xDT)]

And if you want to get rid of the columns modeltrue and modelresult,

xDT[,c("modeltrue", "modelresult") := NULL, with = FALSE]
# NOTE that with = FALSE shouldn't be necessary with data.table 1.8.3
# But I'm still with 1.8.2
share|improve this answer
    
+1 Could the res1<- and res2<- steps each be done in one := by group; e.g., xDT[, numparam_modeltrue := do.call(numparam, unname(.SD)), .SDcols = c(3, 2), by = key(xDT)] directly to save the res1[res2]? –  Matt Dowle Oct 9 '12 at 11:53
    
@MatthewDowle, That would be a possibility, but the two functions refer to different sets of columns, and I defined .SDcols to correspond appropriately. An attempt at subsetting .SD didn't work out yet... –  BenBarnes Oct 9 '12 at 11:57
    
I edited my comment a few times, apols. I mean two :=-by-group, and no res1[res2]. –  Matt Dowle Oct 9 '12 at 12:15
    
Ah yes. Added your suggested alternative, @MatthewDowle –  BenBarnes Oct 9 '12 at 14:02
    
Cool. Nice to see you're up to speed with 1.8.3. –  Matt Dowle Oct 9 '12 at 14:16

The following code sort of works. It is not very pretty, though. Suggestions for improvement welcome. In particular, it would be nice to not have to transpose the matrix and add the column names, and also, since it returns a matrix, there is still that annoying issue where the integers are converted to strings. Thanks to flodel for the tip regarding his answer to "Pass arguments to a function from each row of a matrix".

completemodel <- function(model, colnum)
{
  modlst = c()
  tuplenum = length(model)
  if(tuplenum != 0)
    for(i in 1:tuplenum)
      modlst = c(modlst, model[[i]])
  index = seq(0, colnum-1)
  inddiff = setdiff(index, modlst)
  inddifflen = length(inddiff)
  for(i in seq(length.out=inddifflen))
    model = append(model, inddiff[i])
  return(model)
}

##   Calculate number of parameters in model.
numparam <- function(mod, colnum)
  {
    library(RJSONIO)
    mod = fromJSON(mod)
    print(paste("mod", mod))
    mod = completemodel(mod, colnum)
    totnum = 0
    for(tup in mod)
      totnum = totnum +(4**length(tup))
    return(totnum)
  }

numparamvec <- function(rownum, colnum, modeltrue, modelresult)
  {
    totnum1 = numparam(modeltrue, as.integer(colnum))
    totnum2 = numparam(modelresult, as.integer(colnum))
    return(c(rownum, colnum, totnum1, totnum2))
  }

x = cbind.data.frame(rownum=c(100, 100), colnum=c(10, 20), modeltrue=c("[]", "[]"), modelresult=c("[[1,2]]","[[1,3]]"), stringsAsFactors=FALSE)
val = t(apply(x, 1, function(x)do.call(numparamvec, as.list(x))))
colnames(val) = c("rownum", "colnum", "numparam_modeltrue", "numparam_modelresult")
share|improve this answer
    
+1. Nice application of @flodel's comment. –  BenBarnes Oct 10 '12 at 11:54
    
@BenBarnes: The resulting data frame, however, has integers as strings. Should one just run a converter over the data frame, or is there a better way to handle this? –  Faheem Mitha Oct 10 '12 at 15:08
    
The problem with conversion of the integers to character happens when using the apply function, which calls as.matrix on 2-D objects. If there are any non-numeric, -complex, or -logical data in the data.frame, as.matrix coerces your data to character. vapply allows you to specify the format of the output. (I'll add an example to your post.) –  BenBarnes Oct 11 '12 at 7:35
    
And the result is a matrix, not a data.frame! –  BenBarnes Oct 11 '12 at 7:42
    
@BenBarnes: Thanks for the improved version. I had trouble with the FUN.VALUE argument. It seems from the (scant) documentation that this gives the type and length of the return value from FUN. However, the rules are not precisely stated. I tried using data.frame(rownum = 0, colnum = 0, numparam_modeltrue = 0, numparam_modelresult = 0) but got an error message. The idea was to get a data frame returned instead of a matrix. –  Faheem Mitha Oct 11 '12 at 11:23

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